Webly Supervised Learning of Convolutional Networks

2015 IEEE International Conference on Computer Vision (ICCV)(2015)

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摘要
We present an approach to utilize large amounts of web data for learning CNNs. Specifically inspired by curriculum learning, we present a two-step approach for CNN training. First, we use easy images to train an initial visual representation. We then use this initial CNN and adapt it to harder, more realistic images by leveraging the structure of data and categories. We demonstrate that our two-stage CNN outperforms a fine-tuned CNN trained on ImageNet on Pascal VOC 2012. We also demonstrate the strength of webly supervised learning by localizing objects in web images and training a R-CNN style detector. It achieves the best performance on VOC 2007 where no VOC training data is used. Finally, we show our approach is quite robust to noise and performs comparably even when we use image search results from March 2013 (pre-CNN image search era).
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关键词
Webly supervised learning,Web data,CNN training,initial visual representation,data structure,two-stage CNN,ImageNet,Pascal VOC 2012,Web image,R-CNN style detector,VOC 2007,VOC training data,image search
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